医学
队列
原发性硬化性胆管炎
磁共振成像
阶段(地层学)
放射科
回顾性队列研究
磁共振胰胆管造影术
核医学
内科学
内镜逆行胰胆管造影术
疾病
古生物学
生物
胰腺炎
作者
Yashbir Singh,John E. Eaton,Sudhakar K. Venkatesh,Christopher L. Welle,Byron H. Smith,Shahriar Faghani,Mette Vesterhus,Tom H. Karlsen,Kristin Kaasen Jørgensen,Trine Folseraas,Kosta Petrovic,Anne Negård,Ida Bjoerk,Andreas Abildgaard,Aliya Gulamhusein,Kartik Jhaveri,Gregory J. Gores,Sumera I. Ilyas,Timuçin Taner,Julie K. Heimbach
出处
期刊:Hepatology
[Lippincott Williams & Wilkins]
日期:2025-03-20
卷期号:83 (1): 30-39
被引量:13
标识
DOI:10.1097/hep.0000000000001314
摘要
BACKGROUND AND AIMS: Among those with primary sclerosing cholangitis (PSC), perihilar cholangiocarcinoma (pCCA) is often diagnosed at a late stage and is a leading source of mortality. Detection of pCCA in PSC when curative action can be taken is challenging. Our aim was to create a deep learning model that analyzed MRI to detect early-stage pCCA and compare its diagnostic performance with expert radiologists. APPROACH AND RESULTS: We conducted a multicenter, international, retrospective cohort study involving adults with large duct PSC who underwent contrast-enhanced MRI. Senior abdominal radiologists reviewed the images. All patients with pCCA had early-stage cancer and were registered for liver transplantation. We trained a 3D DenseNet-121 model, a form of deep learning, using MRI images and assessed its performance in a separate test cohort. The study included 398 patients (training cohort n=150; test cohort n=248). pCCA was present in 230 individuals (training cohort n=64; test cohort n=166). In the test cohort, the respective performances of the model compared to the radiologists were: sensitivity 87.9% versus 50.0%, p <0.001; specificity 84.1% versus 100.0%, p <0.001; area under receiving operating curve 86.0% versus 75.0%, p <0.001. Even when a mass was absent, the model had a higher sensitivity for pCCA than radiologists (91.6% vs. 50.6%, p <0.001) and maintained good specificity (84.1%). CONCLUSIONS: The 3D DenseNet-121 MRI model effectively detects early-stage pCCA in PSC patients. Compared to expert radiologists, the model missed fewer cases of cancer.
科研通智能强力驱动
Strongly Powered by AbleSci AI